Operations | Monitoring | ITSM | DevOps | Cloud

September 2022

3 Trade-offs to Consider When Deploying Apache Kafka in the Cloud

Maximizing the value of streaming data requires carefully navigating operational tradeoffs when developing and managing cloud native applications. Organizations that are rapidly producing and processing high volumes of data — like Netflix, Salesforce, Shopify and even the United States Postal Service (USPS), are constantly applying and testing new methods to manage the complexity of data streaming in the cloud.

Nastel Recognized As Top 10 Banking Tech Solution

Banking is about financial transactions. These are executed by sending payments and instructions over middleware. If you control the middleware, then you control the business. If the middleware fails, then the company fails. If you can see and analyze the transactions going through the middleware, you can see the business itself. And if you have real-time analytics of that data and it’s automatically actioned, then you can innovate and accelerate the company’s development.

Modernising applications? Integration with APIs is the way to go

Today’s enterprises can relate to this logic, especially concerning digital transformation projects. They have broken systems that need fixing, but they also spend a lot of effort fixing systems that don’t necessarily need those levels of intervention. Specifically, companies often face a dilemma: digital modernisation requires apps and systems to be upgraded and operate in the new technology norms. Yet those same systems often exist for good reasons.

Integration with Apache Kafka

You can integrate Edge Flow Manager (EFM) with Apache Kafka and forward agent heartbeats to defined Kafka topics. Learn how to perform the integration with Apache Kafka. To integrate EFM with Kafka, you need to configure Kafka and EFM properties. EFM supports the forwarding of agent heartbeats and acknowledges messages exchanged on the C2 protocol between the EFM server and MiNiFi agents.

The Difference Between Artificial Intelligence And Machine Learning

Both Artificial Intelligence and Machine Learning are complex things. There are so many things to know. These days human life has changed because of AI. So, before understanding the differences, let’s know about different factors. If I have to say the difference in simple words. AI helps us solve various tasks; on the other hand, Machine Learning is the subset of AI’s specific tasks. So, you can say that all Machine Learning is AI, but all AI is not machine learning.

How to use OpenTelemetry for Kafka Monitoring

Apache Kafka is a high-throughput, low-latency platform for handling real-time data feeds. Its storage layer is in essence a massively scalable pub/sub message queue designed as a distributed transaction log. It can be used to process streams of data in real-time, building up a commit log of changes. Kafka has strong ordering guarantees that enable it to handle all sorts of dataflow patterns including very low latency messaging and efficient multicast publish / subscribe.

What is Distributed Tracing vs OpenTelemetry?

There are a few key differences between distributed tracing and OpenTelemetry. One is that OpenTelemetry offers a more unified approach to instrumentation, while distributed tracing takes a more granular approach. This means that OpenTelemetry can be less time-consuming to set up, but it doesn’t necessarily offer as much visibility into your system as distributed tracing does.

Internet commerce Marketing Points

One of the most important ecommerce marketing tips should be to power the power of social websites. Unlike search engines, the involvement of customers on social media is definitely significantly bigger. Social media networks are a great way just for eCommerce businesses to connect with consumers, although only if they are really well-targeted..

Top AIOps (Artificial Intelligence for IT Operations) Tools/Platforms in 2022

Artificial intelligence (AI) and associated technologies, such as machine learning and natural language processing (NLP), are used for daily IT operations tasks and activities. AIOps supports IT Ops, DevOps, and SRE teams working smarter and faster to identify digital-service issues earlier and address them quickly, preventing disruptions to business operations and customers. This is accomplished through algorithmic analysis of IT data and Observability telemetry.

Middleware Software Market Is Expected To Expand at Significant Cagr Over 2022-2028

The global Middleware Software market gives a better understanding of the market picture of the local and international markets. It helps the key market players understand the market and product strategies better that can help them survive the global market. The study report gives information on the market volume, market value, predictions of the market share size, and statistics of the international and national level industries.

IBM Patches Severe Vulnerabilities in MQ Messaging Middleware

IBM this week announced patches for high-severity vulnerabilities in IBM MQ, warning that attackers could exploit them to bypass security restrictions or access sensitive information. Messaging and queuing middleware, IBM MQ provides enterprise-grade messaging between applications, enabling the transfer of data between programs and the sending of messages to multiple subscribers. Two security issues were resolved in IBM MQ this week, both residing within the libcurl library.

Business-to-Business Middleware (B2B Integration) Market is Booming Worldwide with Microsoft, Oracle, IBM, etc.

The latest updated report published by Data Lab Forecast of COVID-19 titled “global Business-to-Business Middleware (B2B Integration) market analysis and forecast 2022-2030” includes information regarding the market share, industry’s growth prospects, scope, and challenges. The study comes up with the research objectives, detailed overview, import-export status, market segmentation, market share, and Business-to-Business Middleware (B2B Integration) market size evaluation.

How Does Machine Learning Work?

In this era, machine learning is important. Machine learning helps in business Management operations and understanding customer behaviors. It also helps in the development of new products. Every leading company is shifting towards machine learning. Companies like Amazon, Facebook, Google, and of course Nastel Technologies, prioritize machine learning as their central part. Let’s see how machine learning works.

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How Is Machine Learning Used In AIOps?

When we think of computers, we typically think in terms of exactness. For example, if we ask a computer to do a numeric calculation and it gives us a result, we are 100% sure that the result is correct. And if we write an algorithm and it gives an incorrect result, we know we have coded improperly and it needs to be corrected. This exactness however, is not the case when dealing with Machine Learning. As a matter of fact, it is par for the course, that Machine Learning will be incorrect a percentage of the time.